$L_2$-approximation using randomized lattice algorithms
Abstract
We propose a randomized lattice algorithm for approximating multivariate periodic functions over the -dimensional unit cube from the weighted Korobov space with mixed smoothness and product weights . Building upon the deterministic lattice algorithm by Kuo, Sloan, and Wo\'{z}niakowski (2006), we incorporate a randomized quadrature rule by Dick, Goda, and Suzuki (2022) to accelerate the convergence rate. This randomization involves drawing the number of points for function evaluations randomly, and selecting a good generating vector for rank-1 lattice points using the randomized component-by-component algorithm. We prove that our randomized algorithm achieves a worst-case root mean squared -approximation error of order for an arbitrarily small , where denotes the maximum number of function evaluations, and that the error bound is independent of the dimension if the weights satisfy . Our upper bound converges faster than a lower bound on the worst-case -approximation error for deterministic rank-1 lattice-based approximation proved by Byrenheid, K\"{a}mmerer, Ullrich, and Volkmer (2017). We also show a lower error bound of order for our randomized algorithm, leaving a slight gap between the upper and lower bounds open for future research.
Cite
@article{arxiv.2409.18757,
title = {$L_2$-approximation using randomized lattice algorithms},
author = {Mou Cai and Takashi Goda and Yoshihito Kazashi},
journal= {arXiv preprint arXiv:2409.18757},
year = {2025}
}
Comments
major revision, 23 pages